Spatiotemporal estimation of groundwater and surface water conditions by integrating deep learning and physics-based watershed models

IF 7.2 2区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Soobin Kim , Eunhee Lee , Hyoun-Tae Hwang , JongCheol Pyo , Daeun Yun , Sang-Soo Baek , Kyung Hwa Cho
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引用次数: 0

Abstract

The impacts of climate change on hydrology underscore the urgency of understanding watershed hydrological patterns for sustainable water resource management. The conventional physics-based fully distributed hydrological models are limited due to computational demands, particularly in the case of large-scale watersheds. Deep learning (DL) offers a promising solution for handling large datasets and extracting intricate data relationships. Here, we propose a DL modeling framework, incorporating convolutional neural networks (CNNs) to efficiently replicate physics-based model outputs at high spatial resolution. The goal was to estimate groundwater head and surface water depth in the Sabgyo Stream Watershed, South Korea. The model datasets consisted of input variables, including elevation, land cover, soil type, evapotranspiration, rainfall, and initial hydrological conditions. The initial conditions and target data were obtained from the fully distributed hydrological model HydroGeoSphere (HGS), whereas the other inputs were actual measurements in the field. By optimizing the training sample size, input design, CNN structure, and hyperparameters, we found that CNNs with residual architectures (ResNets) yielded superior performance. The optimal DL model reduces computation time by 45 times compared to the HGS model for monthly hydrological estimations over five years (RMSE 2.35 and 0.29 m for groundwater and surface water, respectively). In addition, our DL framework explored the predictive capabilities of hydrological responses to future climate scenarios. Although the proposed model is cost-effective for hydrological simulations, further enhancements are needed to improve the accuracy of long-term predictions. Ultimately, the proposed DL framework has the potential to facilitate decision-making, particularly in large-scale and complex watersheds.

Abstract Image

通过整合深度学习和基于物理的流域模型,对地下水和地表水状况进行时空估算
气候变化对水文的影响凸显了了解流域水文模式以实现可持续水资源管理的紧迫性。传统的基于物理的全分布式水文模型因计算需求而受到限制,尤其是在大规模流域的情况下。深度学习(DL)为处理大型数据集和提取错综复杂的数据关系提供了一种前景广阔的解决方案。在此,我们提出了一个深度学习建模框架,其中包含卷积神经网络(CNN),可在高空间分辨率下有效复制基于物理的模型输出。我们的目标是估算韩国三桥溪流域的地下水水头和地表水深度。模型数据集由输入变量组成,包括海拔、土地覆盖、土壤类型、蒸散量、降雨量和初始水文条件。初始条件和目标数据来自全分布式水文模型 HydroGeoSphere (HGS),而其他输入变量则是实地实际测量数据。通过优化训练样本大小、输入设计、CNN 结构和超参数,我们发现具有残差架构(ResNets)的 CNN 性能更优。与 HGS 模型相比,最佳 DL 模型在五年的月度水文估算中将计算时间缩短了 45 倍(地下水和地表水的 RMSE 分别为 2.35 米和 0.29 米)。此外,我们的 DL 框架还探索了对未来气候情景的水文响应预测能力。尽管提议的模型在水文模拟方面具有成本效益,但仍需进一步改进,以提高长期预测的准确性。最终,拟议的 DL 框架有可能促进决策,尤其是大规模复杂流域的决策。
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来源期刊
Water Research X
Water Research X Environmental Science-Water Science and Technology
CiteScore
12.30
自引率
1.30%
发文量
19
期刊介绍: Water Research X is a sister journal of Water Research, which follows a Gold Open Access model. It focuses on publishing concise, letter-style research papers, visionary perspectives and editorials, as well as mini-reviews on emerging topics. The Journal invites contributions from researchers worldwide on various aspects of the science and technology related to the human impact on the water cycle, water quality, and its global management.
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